17.10.2023
Sabrina Marchl
Author: Sabrina Marchl

Throwback Webinar AI-Powered Cash Back Analytics

In our recent webinar titled "AI-Powered Cash Back Analytics – Exploring Savings Opportunities with Advanced Data Analytics," we delved into the issue of duplicate payments and credit notes, demonstrating the crucial role that AI-powered data analytics can play. In this blog post, we summarize the key insights and provide a link to the webinar recording.

Why Do Duplicate Payments Occur?

Duplicate payments are a common problem in businesses, and conventional control mechanisms do not always offer sufficient protection. Reasons for duplicate payments can vary, including insufficient master data quality, weaknesses in processes, or fraudulent activities. Manual identification of such cases in the system is often difficult and time-consuming.

AI-Powered Solutions for Complex Problems

In the webinar, we highlighted how AI-powered data analytics can help analyze duplicate payments and credits notes more efficiently. A key aspect in identifying duplicate payments is distinguishing between genuine cases and so-called "False Positives." AI algorithms assist us in this regard, enabling quick and precise analysis even in complex situations. Particularly considering that the match of supplier name and invoice number alone is not always sufficient, as there are cases where this information is identical, yet no duplicate payment exists. These are known as "False Positives." Through a hybrid approach that combines rule-based data analytics with AI algorithms and continuous individual training, AI becomes increasingly better at recognizing "False Positives" and significantly reduces the effort required to review the analytic results.

Missed the Webinar? No worries!

Feel free to watch the complete webinar for further insights into the world of AI-powered cash back analytics and discover how your company can benefit from these advanced technologies.

Link to the recording


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